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基于改进YOLOv11的海上平台个人防护设备穿戴监测算法研究

Research on wearing monitoring algorithm of personal protective equipment for offshore platforms based on improved YOLOv11

  • 摘要: 为了降低海上平台由于作业人员不安全行为而导致发生事故的风险,通过研究个人防护设备穿戴监测算法来降低人员不安全行为风险。针对传统的机器视觉算法难以对多尺度、遮挡严重、小目标的个人防护设备穿戴行为进行监测等问题,基于传统的YOLOv11算法,分别提出C3K2_WT、C3K2_ADV和C2PSA_SIM的改进模块,形成改进的YOLOv11海上平台个人防护设备穿戴行为监测算法。实验结果表明,改进后的YOLOv11模型在海上平台个人防护设备穿戴行为监测方面,相比于原模型平均精度均值mAP@0.5提升了2.7%,召回率Recall提升了3%,精确率提升了1%,平均精度均值提升了1.7%,达到88.7%。研究结果表明该方法对比其它方法效果更好,能够有效监测海上平台个人防护设备穿戴行为。

     

    Abstract: In order to reduce the risks of accidents on offshore platforms caused by unsafe behaviors of personnel, this study investigates a monitoring algorithm for the wearing of personal protective equipment (PPE) to reduce the risk of unsafe human behaviors. Traditional machine vision algorithms often struggle to detect PPE wearing behavior under challenges such as multi-scale variation, severe occlusion, and small target size. To address these issues, three improved modules of C3K2_WT, C3K2_ADV and C2PSA_SIM are proposed respectively based on the conventional YOLOv11 framework, forming an enhanced YOLOv11-based algorithm for monitoring PPE wearing behavior on offshore platforms. Experiment results show that compared to the original model, the improved YOLOv11 model achieves an increase of 2.7% in average precision mean (mAP@0.5), 3% in recall, 1% in precision and 1.7% in mean average precision (reaching 88.7%) for offshore platform PPE wearing behavior monitoring. The findings demonstrate that the proposed method outperforms other conventional approaches and can effectively monitor PPE wearing behaviors on offshore platforms.

     

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